from concurrent.futures import ProcessPoolExecutor, as_completed

from tqdm import tqdm


def parallel_process(array, function, n_jobs=16, use_kwargs=False, front_num=0):
    """
    A parallel version of the map function with a progress bar.

    Args:
        array (array-like): An array to iterate over.
        function (function): A python function to apply to the elements of array
        n_jobs (int, default=16): The number of cores to use
        use_kwargs (boolean, default=False): Whether to consider the elements of array as dictionaries of
            keyword arguments to function
        front_num (int, default=3): The number of iterations to run serially before kicking off the parallel job.
            Useful for catching bugs
    Returns:
        [function(array[0]), function(array[1]), ...]
    """
    # We run the first few iterations serially to catch bugs
    if front_num > 0:
        front = [function(**a) if use_kwargs else function(a) for a in array[:front_num]]
    else:
        front = []
    # If we set n_jobs to 1, just run a list comprehension. This is useful for benchmarking and debugging.
    if n_jobs == 1:
        return front + [function(**a) if use_kwargs else function(a) for a in tqdm(array[front_num:])]
    # Assemble the workers
    with ProcessPoolExecutor(max_workers=n_jobs) as pool:
        # Pass the elements of array into function
        if use_kwargs:
            futures = [pool.submit(function, **a) for a in array[front_num:]]
        else:
            futures = [pool.submit(function, a) for a in array[front_num:]]
        kwargs = {"total": len(futures), "unit": "it", "unit_scale": True, "leave": True}
        # Print out the progress as tasks complete
        for f in tqdm(as_completed(futures), **kwargs):
            pass
    out = []
    # Get the results from the futures.
    for i, future in tqdm(enumerate(futures)):
        try:
            out.append(future.result())
        except Exception as e:
            out.append(e)
    return front + out
